Question

Find the​ least-squares regression line treating square footage as the explanatory variable. Square Footage, x Selling...

Find the​ least-squares regression line treating square footage as the explanatory variable. Square Footage, x Selling Price ($000s), y

2209 - 380.7

3323 - 396

1105 - 186.3

1953 - 334.5

3225 - 639.7

2741 - 365.7

3987 - 608

2147 - 367

2536 - 413.6

1632 - 286.2

1749 - 265.3

3882 - 700.2

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